User:Manetta/thesis/thesis-outline: Difference between revisions
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== intro== | |||
===NLP=== | |||
With 'i-could-have-written-that' i would like to look at technologies that process natural language (NLP). By regarding NLP software as cultural objects, i'll focus on the inner workings of their technologies: how do they systemize our natural language? | |||
* what is NLP? | |||
NLP is a category of software packages that is concerned with the interaction between human language and machine language. NLP is mainly present in the field of computer science, artificial intelligence and computational linguistics. | |||
* where is it used in the wild? | |||
NLP is part of translation engines, search engines, speech recognition, auto-correction, chatbots, OCR (optical character recognition), license plate detection, text-mining: using the content on the Web to construct meaningful datasets, ...; | |||
* why is it important to speak about it? | |||
Placing the computer in a central position in my project, not only as technology but also as a cultural object, makes it possible to reveal in which way NLP software is constructed to understand human language, and what side-effects they have. | |||
===knowledge discovery in data (data-mining)=== | |||
For the occassion of graduating this year, i would like to look at data-mining. | |||
* what is data-mining, text-mining? | |||
Data-mining is the information-processing technology that is part of the ''knowledge discovery in data'' process. In many cases the Web is used as an information resource. By training algorithms to recognize patterns in these large set of information, data is constructed. This data is regarded as valuable, and used (or sometimes sold) for advertisements and descision making processes, where data-mining results are used as argumentation. | |||
* where is it used in the wild? | |||
* what (for me) is problematic with data-mining? | |||
* what effects does that have? | |||
* | * (how could that be improved?) | ||
* | |||
==hypothesis== | ==hypothesis== |
Revision as of 17:31, 6 January 2016
outline
intro
NLP
With 'i-could-have-written-that' i would like to look at technologies that process natural language (NLP). By regarding NLP software as cultural objects, i'll focus on the inner workings of their technologies: how do they systemize our natural language?
- what is NLP?
NLP is a category of software packages that is concerned with the interaction between human language and machine language. NLP is mainly present in the field of computer science, artificial intelligence and computational linguistics.
- where is it used in the wild?
NLP is part of translation engines, search engines, speech recognition, auto-correction, chatbots, OCR (optical character recognition), license plate detection, text-mining: using the content on the Web to construct meaningful datasets, ...;
- why is it important to speak about it?
Placing the computer in a central position in my project, not only as technology but also as a cultural object, makes it possible to reveal in which way NLP software is constructed to understand human language, and what side-effects they have.
knowledge discovery in data (data-mining)
For the occassion of graduating this year, i would like to look at data-mining.
- what is data-mining, text-mining?
Data-mining is the information-processing technology that is part of the knowledge discovery in data process. In many cases the Web is used as an information resource. By training algorithms to recognize patterns in these large set of information, data is constructed. This data is regarded as valuable, and used (or sometimes sold) for advertisements and descision making processes, where data-mining results are used as argumentation.
- where is it used in the wild?
- what (for me) is problematic with data-mining?
- what effects does that have?
- (how could that be improved?)
hypothesis
The results of data-mining software are not mined, results are constructed.
What elements do allow for algorithmic agreeability?
project
voice: accessible for a wider public
problem formulations:
- terminology ('mining', 'data')
- text-processing
- from: able to check results with senses (OCR), to: intuition (data-mining) [what are the differences?]
- parsing, how text is treated: as n-grams, chunks, bag-of-words, characters
- use of wordclouds
- data as autonomous entity; from: information, to: data science [what are the differences?]
algorithmic agreeability case study objects (from the wild)
- terminology & anthropomorphism: data 'mining' (wiki-page)
- terminology & anthropomorphism: 'machine learning'
- terminology: 'data'
- wordclouds
thesis
voice: more technical? + theoretical
theory
- solutionism & techno optimism
algorithmic agreeability case study objects (field-specific)
- workflow mining-software (eg. Pattern, Wecka)
- software workflow diagram
- the use of mathematical graphs & dimensions
research material
→ filesystem interface, collecting research related material (+ about the workflow)
→ wikipage for 'i-could-have-written-that' (list of prototypes & inquiries)
→ little glossary
mining as ideology
* from mining minerals to mining data
anthropomorphism
* anthropomorphic qualities of a computer (?)
* the photographic apparatus → the data apparatus (annotations)
* Joseph's (Weizenbaum) questions on Computer Power and Human Reason
text processing
* semantic math: averaging polarity rates in Pattern (text mining software package)
* notes on wordclouds
* automatic reading machines; from encoding-decoding to constructed-truths
* index of WordNet 3.0 (2006)
data as autonomous entity
* knowledge driven by data - whenever i fire a linguist, the results improve
other
* (laughter) - it's embarrassing but these are the words
* call for a syntactic view; Florian Cramer & Benjamin Bratton (text)
* EUR PhD presentation 'Sentiment Analysis of Text Guided by Semantics and Structure' (13-11-2015)
* index of Roget's thesaurus (1805)
* comparing the classification of the word 'information' Thesaurus (1911) vs. WordNet 3.0 (2006)
annotations
- Alan Turing - Computing Machinery and Intelligence (1936)
- The Journal of Typographic Research - OCR-B: A Standardized Character for Optical Recognition this article (V1N2) (1967); → abstract
- Ted Nelson - Computer Lib & Dream Machines (1974);
- Joseph Weizenbaum - Computer Power and Human Reason (1976); → annotations
- Water J. Ong - Orality and Literacy (1982);
- Vilem Flusser - Towards a Philosophy of Photography (1983); → annotations
- Christiane Fellbaum - WordNet, an Electronic Lexical Database (1998);
- Charles Petzold - Code, the hidden languages and inner structures of computer hardware and software (2000); → annotations
- John Hopcroft, Rajeev Motwani, Jeffrey Ullman - Introduction to Automata Theory, Languages, and Computation (2001);
- James Gleick - The Information, a History, a Theory, a Flood (2008); → annotations
- Matthew Fuller - Software Studies. A lexicon (2008);
- Language, Florian Cramer; → annotations
- Algorithm, Andrew Goffey;
- Marissa Meyer - the physics of data, lecture (2009); → annotations
- Matthew Fuller & Andrew Goffey - Evil Media (2012); → annotations
- Antoinette Rouvroy - All Watched Over By Algorithms - Transmediale (Jan. 2015); → annotations
- Benjamin Bratton - Outing A.I., Beyond the Turing test (Feb. 2015) → annotations
- Ramon Amaro - Colossal Data and Black Futures, lecture (Okt. 2015); → annotations
- Benjamin Bratton - On A.I. and Cities : Platform Design, Algorithmic Perception, and Urban Geopolitics (Nov. 2015);
bibliography (five key texts)
- Language, Florian Cramer (2008); → annotations
- Antoinette Rouvroy - All Watched Over By Algorithms - Transmediale (Jan. 2015); → annotations
- The Journal of Typographic Research - OCR-B: A Standardized Character for Optical Recognition this article (V1N2) (1967); → abstract